Abstract

Structural insight of the protein–protein interaction (PPI) interface can provide knowledge about the kinetics, thermodynamics and molecular functions of the complex while elucidating its role in diseases and further enabling it as a potential therapeutic target. However, owing to experimental lag in solving protein–protein complex structures, three-dimensional (3D) knowledge of the PPI interfaces can be gained via computational approaches like molecular docking and post-docking analyses. Despite development of numerous docking tools and techniques, success in identification of native like interfaces based on docking score functions is limited. Hence, we employed an in-depth investigation of the structural features of the interface that might successfully delineate native complexes from non-native ones. We identify interface properties, which show statistically significant difference between native and non-native interfaces belonging to homo and hetero, protein–protein complexes. Utilizing these properties, a support vector machine (SVM) based classification scheme has been implemented to differentiate native and non-native like complexes generated using docking decoys. Benchmarking and comparative analyses suggest very good performance of our SVM classifiers. Further, protein interactions, which are proven via experimental findings but not resolved structurally, were subjected to this approach where 3D-models of the complexes were generated and most likely interfaces were predicted. A web server called Protein Complex Prediction by Interface Properties (PCPIP) is developed to predict whether interface of a given protein–protein dimer complex resembles known protein interfaces. The server is freely available at http://www.hpppi.iicb.res.in/pcpip/.

Highlights

  • Structural insight of the protein–protein interaction (PPI) interface can provide knowledge about the kinetics, thermodynamics and molecular functions of the complex while elucidating its role in diseases and further enabling it as a potential therapeutic target

  • Computational approaches capable of generating reliable model of protein complexes using protein–protein docking tools can play an important role in complementing the experimental initiatives

  • Protein dimer complex structures have been derived from protein data bank (PDB)[87], which were categorized into homo (560) and hetero (429) dimers

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Summary

Introduction

Structural insight of the protein–protein interaction (PPI) interface can provide knowledge about the kinetics, thermodynamics and molecular functions of the complex while elucidating its role in diseases and further enabling it as a potential therapeutic target. Most of these interactions lack detailed structural information and thereby making them therapeutically non-viable targets Under this scenario, computational approaches capable of generating reliable model of protein complexes using protein–protein docking tools can play an important role in complementing the experimental initiatives. Our exhaustive testing and benchmarking suggest very good performance of our SVM models in distinguishing native and non-native like interfaces for homo and hetero complexes We implemented this approach in validating protein interactions, which are proven via experimental findings but the three-dimensional (3D) structure of the complexes and the subsequent interface(s) are yet to be discovered. We provide a web server platform namely PCPIP to predict whether the interacting interface of a given protein–protein dimer complex significantly resembles known protein interfaces

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